Creating Something from Nothing: Synthetic and Dummy files Bo Wandschneider University of Guelph...
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Transcript of Creating Something from Nothing: Synthetic and Dummy files Bo Wandschneider University of Guelph...
Creating Something from Nothing:
Synthetic and Dummy files
Bo WandschneiderUniversity of Guelph
Chuck HumphreyUniversity of Alberta
DLI Training: Ottawa, May, 2003
Outline
• Types of data Files • Implications for analysis• Where do we get access• Which file is appropriate• Providing service with synthetic files • NPHS: an exercise• SLID: an exercise
Types of Data Files
• Microdata• Confidential Microdata Products
• Master Files• Share Files
• Public Access Microdata Products • Public Use Anonym zed microdata
(PUMFS)• Synthetic Files
Microdata Products
Microdata• raw data organized in a file where
the records or lines in the file are observations of a specific unit of analysis and the information on the lines are the values of variables
• requires some form of processing or analysis to be used
Microdata Products
Microdata - SCF Example000011031000+025607+000000+025607+000337+000000+000000+000000+000000+000000+000000+000000+000000+000000+000000+000000+000000+025944+006481+0194632331000000000090922201200000000000222+0232111000+000000+0000003000000000000000002228233411412190638749500575211004600132 000021031000+000000+000000+000000+000000+000000+000000+000000+000000+000000+000000+000000+000000+000000+000000+000000+000000+000000+000000+0000001663000000000060824432200000000000632+0000000000+000000+0000000000000000000000003116121111435481500777500570033004300110 000031031000+000000+000000+000000+000000+000000+000000+000000+000000+000000+000000+000000+000000+000000+000000+000000+000000+000000+000000+0000001663000000000040521112200000000000432+0206261110+000636+0000003000000000000000002228213411436491600778500570033004200085 000041031000+002080+000000+002080+000000+000575+000522+000000+000000+002574+000000+000000+003671+003149+000522+000000+000000+005751+000000+0057514551000000000060824432200000000000532+0220101021+000575+0005223000000000000000002240223411431251000774500571622361600065 000051031000+018050+000000+018050+000000+000288+000261+000000+000000+000000+000000+000000+000549+000288+000261+000000+001179+019778+002463+0173152221000000000050522201200000000000432+0000001011+000288+0002611000000000000000001246123411411440748739500575011021600046 000061031000+001500+000000+001500+000000+000000+000000+000000+000000+000000+000000+000000+000000+000000+000000+000000+000000+001500+000000+0015002551000000000101024501200000000000631+0000000000+000000+0000000000000000000000003123263411431071300773500571612004300094 000071031000+000000+000000+000000+000000+000000+000000+002540+000000+000000+000000+000000+002540+002540+000000+000000+000000+002540+000000+0025404152000000000010340201200000000000222+0121134000+000000+0000003000000000000000002269233411436491600778500570033004200041 000081031000+008400+000000+008400+000000+000000+000000+000000+000000+000000+000000+000000+000000+000000+000000+000000+000000+008400+000858+0075422551000000000080823301200000000000332+0000000000+000000+0000000000000000000000003118133411411210848739500575211004600055 000091031000+026000+000000+026000+000000+000287+000156+000000+000000+000879+000000+000000+001322+001166+000156+000000+000000+027322+004335+0229872231000000000070823422200000000000642+0000001012+000287+0001561000000000000000001248113411431400300774500564512071600060 000101031000+000000+000000+000000+000157+000000+000000+005043+000000+000000+000000+000000+005043+002541+002502+000000+000000+005200+000000+0052004652000000000040622312200000000000642+0000000000+000000+0000002000000000000000004376213411436491600778500570033004400076 000111031000+000000+000000+000000+000000+000000+000000+000000+000000+000000+000000+000000+000000+000000+000000+000000+000000+000000+000000+0000001663000000000020341213100000000000462+0000000000+000000+0000000000000000000000003119213411435481500777500570033004500040 000121031000+000991+000000+000991+000000+000000+000000+000000+000000+000000+000000+000000+000000+000000+000000+000000+000000+000991+000000+0009912551000000000020343322100000000000433+0000000000+000000+0000000000000000000000003117121311432231400773500571222004300244 000131031000+027716+000000+027716+000000+000288+000000+000000+000000+000000+000000+000000+000288+000288+000000+000000+000000+028004+006243+0217612221000000000070722201200000000000331+0034071100+000288+0000001000000000000000001226163411411431138739500575211004600156 000141031000+010000+000000+010000+000000+000600+000000+000000+000000+000000+000000+000000+000600+000600+000000+000000+000000+010600+000686+0099142331000000000040422201200000000000433+0077001011+000600+0005221000000000000000001260123411411440636719500573012221600148 000151031000+000750+000000+000750+000000+000000+000370+000000+000000+000000+000000+000000+000370+000000+000370+000000+000000+001120+000000+0011202551000000000080823313200000000000633+0323511032+001126+0003703000000000000000002245223411411261318529500575222004600132 000161031000+007012+000000+007012+000165+000000+000000+000000+000000+003082+000000+000000+003082+003082+000000+000000+000000+010259+001356+0089032541000000000070824432200000000000531+0000000000+000000+0000000000000000000000003118123411421320320439500573522171600111 000171031000+002027+000000+002027+000000+000000+000000+000000+000000+000000+000000+000000+
Confidential Microdata
Master Files• These files contain the fullness of
detail captured about the unit of observation. The information in these files can identify the individual who provided the original information and, therefore, are considered confidential.
Confidential Microdata
Master File – Example
Confidential Microdata
Master File - Personal identifiers
Confidential Microdata
Master File – Geography (SLID)
Confidential Microdata
Master File - Fullness of Data (NPHS)
Confidential Microdata
Master File - Fullness of Data
Confidential Microdata
Master File - Fullness of Data (SLID)
Confidential Microdata
Master File - Fullness of Data
Confidential Microdata
Share Files• these are confidential files in
which the respondents have signed a consent form permitting Statistics Canada to allow access to their information for approved research.
• Used with NPHS and NLSCY
Public Access Microdata
Anonymized Microdata• these microdata are specially
prepared to minimize the possibility of disclosing or identifying any of the cases or observations
• the original data from the master file are edited to create a public use microdata file
Public Access Microdata
Steps in Anonymizing Microdata• removal of all personal identification
information (names, addresses, etc)• include only gross levels of geography• collapse detailed information into a
smaller number of general categories• suppress the values of a variable
Public Access Microdata
Statistics Canada PUMFs• only available for select social
surveys that undergo a review of the Data Release Committee, an internal Statistics Canada committee
• no ‘enterprise’ public use microdata
Public Access Microdata
Statistics Canada PUMFs• almost all are cross-sectional, that
is, represent data collected at one point in time
• longitudinal data are difficult to anonymize while maintaining any useful information
Public Access Microdata
PUMFs – personal identifiers
Public Access Microdata
PUMFs – gross geography
Public Access Microdata
PUMFs – collapsed data
Public Access Microdata
PUMFs – suppressed data
Public Access Microdata
Synthetic Files• These microdata do not contain
actual ‘real’ cases but are pseudo-cases that provide aggregate results close to the ‘real’ cases
Public Access Microdata
Synthetic Files• They have been prepared to
create analysis runs with the master file without possibly disclosing or identifying any of the cases
Public Access Microdata
Synthetic Files• The results are not to be reported;
strictly to be used to prepare analyses of master files
• Usually associated with longitudinal files
Public Access Microdata
Steps in creating Synthetic Files• Observations are transformed• No records actually exist• Keep fullness of detail
Public Access Microdata
Synthetic Files – NPHS example
Public Access Microdata
Synthetic Files – NPHS 1999 general file
PUMF Synthetic
Obs 49046 49046
Var 176 400
Public Access Microdata
Synthetic Files – NPHS 1999
Public Access Microdata
Synthetic Files – NPHS 1999
Implications for Analysis
What are the implications in doing analysis with these different types of microdata files?
Implications for Analysis
Master File• All observations• Has the most variables with the
most detail• Lots of geography and personal
characteristics• Little grouping or capping of
categories
Implications for Analysis
Master File• Restricted access: only available
to authorized Statistics Canada employees, which includes ‘deemed employees’
Implications for Analysis
Master File• Includes linkage variables across
files within a study, e.g., NLSCY linkage among the files for different units of analysis (kids, parents, teachers)
Implications for Analysis
Public Use Microdata (PUMF)• Suppressed observations• Suppressed variables: removed
from the file• Suppressed content
• Gross geography• Collapsed categories• Capped values
Implications for Analysis
Public Use Microdata (PUMF)• Licensed product: agree to certain
terms of use• No linkage to multiple units of
analysis, with a few exceptions (GSS Time Use and Family)
Implications for Analysis
Synthetic Files“Looks like a duck and quacks like a duck”, but it isn’t a duck or any other type of fowl.
Implications for Analysis
Synthetic Files• Looks like master files• Lots of observations• Lots of variables• Little grouping or capping of
categories• Lots of geographic detail
Synthetic Files
Precautions• Results not authentic – but close
in the aggregate• Use for testing analysis setups
only• Still need the master files for
publishable results
Where do we get Access?
Master File• Restricted access governed under
the Statistics Act• Remote Job Submission• Research Data Centres
• Apply to SSHRC to obtain a peer-reviewed proposal and STC for security clearance
Where do we get Access?
Public Use Microdata Files (PUMF)• Get from DLI• Analyze where ever is convenient • Can use a variety of analysis
software, including SAS, SPSS, Stata, HLM, LISREL, etc.
• Slidret sans data
Where do we get Access?
Synthetic Files• Author Divisions ‘may’ create it• Most relevant when dealing with
new Panel Data, but not necessarily, e.g., the Census has potential
• NPHS synthetic files on DLI FTP site
Where do we get Access?
Synthetic files• SLID, WES, YITS coming ????
• Do we need to encourage them?
• Work with locally• Build SAS and SPSS setups
Which File is Appropriate?
• 1st stop is still the PUMF• This file has the easiest access for us• Probably meets the needs of most
clients• Not as administratively burdensome
as synthetic or master file• Perfect for clients just looking for
‘data’ – courses in quantitative analysis
Which File is Appropriate?
• If more detail is needed, refer to the Master File Documentation (similar to Synthetic File Documentation)
• Make them aware that the cost of use is higher, both in terms of accessibility and analytical requirements
• Interest most likely to come from grad students and ‘experienced’ researchers
Which File is Appropriate?
• Download the Synthetic files from DLI
• Make them aware of problems with synthetic files – RESULTS ARE NOT PUBLISHABLE
• Encourage them to submit an application for RDC access – there is a time lag
Which File is Appropriate?
RDC
Which File is Appropriate?
• Some of you may work with client using synthetic files before passing her/him off to RDC
DLI Contacts can provide four basic services with synthetic files.
• Build SPSS and SAS system files from the raw synthetic data files that are distributed through DLI;
• Provide information about the use of Remote Job Submission (a.k.a, Remote Access) and RDC’s;
Services for Synthetic Files
• Assist with finding variables in the synthetic files;
• Provide instruction about ways of capturing SPSS or SAS code from “dummy” analysis runs with the synthetic files. It is this code that is then submitted to STC through remote job submission.
Services for Synthetic Files
1. Building SPSS and SAS system files for synthetic data• The NPHS synthetic data are distributed
as a raw ASCII file with accompanying command files for SPSS and SAS
• Separate synthetic data files exist for the master file setup and for bootstrapping analysis
Services for Synthetic Files
1. Building SPSS and SAS system files for synthetic data• The synthetic data for the 2000-2001
NPHS has 4,138 variables and 17,276 fabricated cases. Creating the SPSS and SAS system files from this file is not difficult, but it does take time. DLI Contacts may wish to create these products for their patrons.
Services for Synthetic Files
2. Information about Remote Job Submission (RJS)• The author divisions supporting RJS have
established their own guidelines and have different operating procedures. Not all divisions supporting longitudinal surveys currently support RJS.
• Therefore, there is a need to track down this information for our patrons.
Services for Synthetic Files
2. Information about Remote Job Submission (RJS)• For example, the sources for information
about RJS include the Centre for Education Statistics:
http://www.statcan.ca/english/edu/rda/index.htm
Services for Synthetic Files
2. Information about Remote Job Submission (RJS)Where do you find this information?• Ask the DLI Team via the DLI List• The EAC has asked for a description of
RJS on the DLI website, which should be on the DLI Team’s to-do list
Services for Synthetic Files
2. Information about Research Data Centres
• The collection of master files available through RDC’s is listed on the STC website for RDC’s
• Each RDC has its own website describing its services
http://www.statcan.ca/english/rdc/index.htm
Services for Synthetic Files
3. Data Reference for the content of the synthetic files
• Helping researchers identify variables over longitudinal files is an important service
• Need to keep the unit of analysis straight• Need to understand the mnemonic naming
convention for variables over cycles• Develop indexing aids for you and your
patrons
Services for Synthetic Files
4. Provide helpful tips for preserving the code from “dummy” analysis runs in SPSS and SAS
• Researchers will run analyses on the synthetic file to generate the code that they will subsequently email for Remote Job Submission
• Providing information about how to do this easily will be helpful to your patrons
Services for Synthetic Files
Let’s look at an example of these four services using the synthetic files from the NPHS, 2000-2001.
An Example Using the NPHS
Let’s look at an example of a “dummy” file using SLIDRET, a retrieval system developed to extract data from the cycles of the SLID. A “data-less” version of SLIDRET is available through DLI to help identify variables for RJS.
An Example Using SLID
Location of Slides and Exercices
http://drc.uoguelph.ca/DATA/WKSHPS/IASSIST2003